Training Detection-Range-Frugal Cooperative Collision Avoidance Models for Quadcopters via Neuroevolution

05/31/2019
by   Amir Behjat, et al.
0

Cooperative autonomous approaches to avoiding collisions among small Unmanned Aerial Vehicles (UAVs) is central to safe integration of UAVs within the civilian airspace. One potential online cooperative approach is the concept of reciprocal actions, where both UAVs take pre-trained mutually coherent actions that do not require active online coordination (thereby avoiding the computational burden and risk associated with it). This paper presents a learning based approach to train such reciprocal maneuvers. Neuroevolution, which uses evolutionary algorithms to simultaneously optimize the topology and weights of neural networks, is used as the learning method -- which operates over a set of sample approach scenarios. Unlike most existing work (that minimize travel distance, energy or risk), the training process here focuses on the objective of minimizing the required detection range; this has important practical implications w.r.t. alleviating the dependency on sophisticated sensing and their reliability under various environments. A specialized design of experiments and line search is used to identify the minimum detection range for each sample scenarios. In order to allow an efficient training process, a classifier is used to discard actions (without simulating them) where the controller would fail. The model obtained via neuroevolution is observed to generalize well to (i.e., successful collision avoidance over) unseen approach scenarios.

READ FULL TEXT
research
09/17/2021

Autonomous Vision-based UAV Landing with Collision Avoidance using Deep Learning

There is a risk of collision when multiple UAVs land simultaneously with...
research
08/05/2022

A reformulation of collision avoidance algorithm based on artificial potential fields for fixed-wing UAVs in a dynamic environment

As mini UAVs become increasingly useful in the civilian work domain, the...
research
05/01/2018

Cooperative system of emission source localization based on SDF

Efficient and precise location of emission sources in an urbanized envir...
research
09/18/2023

Toward collision-free trajectory for autonomous and pilot-controlled unmanned aerial vehicles

For drones, as safety-critical systems, there is an increasing need for ...
research
06/10/2019

Composition of Safety Constraints With Applications to Decentralized Fixed-Wing Collision Avoidance

In this paper we discuss how to construct a barrier certificate for a co...
research
09/27/2016

Reactive Collision Avoidance using Evolutionary Neural Networks

Collision avoidance systems can play a vital role in reducing the number...
research
07/24/2018

A Localization Method Avoiding Flip Ambiguities for micro-UAVs with Bounded Distance Measurement Errors

Localization is a fundamental function in cooperative control of micro u...

Please sign up or login with your details

Forgot password? Click here to reset